Bayes Factors for Evaluating Latent Monotonicity in Polytomous Item Response Theory Models

被引:0
作者
Jesper Tijmstra
Maria Bolsinova
机构
[1] Tilburg University,Department of Methodology and Statistics, Faculty of Social Sciences
[2] ACTNext,undefined
来源
Psychometrika | 2019年 / 84卷
关键词
Latent monotonicity; manifest monotonicity; item response theory; polytomous IRT; nonparametric IRT; Bayes factor;
D O I
暂无
中图分类号
学科分类号
摘要
The assumption of latent monotonicity is made by all common parametric and nonparametric polytomous item response theory models and is crucial for establishing an ordinal level of measurement of the item score. Three forms of latent monotonicity can be distinguished: monotonicity of the cumulative probabilities, of the continuation ratios, and of the adjacent-category ratios. Observable consequences of these different forms of latent monotonicity are derived, and Bayes factor methods for testing these consequences are proposed. These methods allow for the quantification of the evidence both in favor and against the tested property. Both item-level and category-level Bayes factors are considered, and their performance is evaluated using a simulation study. The methods are applied to an empirical example consisting of a 10-item Likert scale to investigate whether a polytomous item scoring rule results in item scores that are of ordinal level measurement.
引用
收藏
页码:846 / 869
页数:23
相关论文
共 50 条
[41]   Restricted Recalibration of Item Response Theory Models [J].
Yang Liu ;
Ji Seung Yang ;
Alberto Maydeu-Olivares .
Psychometrika, 2019, 84 :529-553
[42]   Restricted Recalibration of Item Response Theory Models [J].
Liu, Yang ;
Yang, Ji Seung ;
Maydeu-Olivares, Alberto .
PSYCHOMETRIKA, 2019, 84 (02) :529-553
[43]   Estimation of Latent Regression Item Response Theory Models Using a Second-Order Laplace Approximation [J].
Andersson, Bjorn ;
Xin, Tao .
JOURNAL OF EDUCATIONAL AND BEHAVIORAL STATISTICS, 2021, 46 (02) :244-265
[44]   On Longitudinal Item Response Theory Models: A Didactic [J].
Wang, Chun ;
Nydick, Steven W. .
JOURNAL OF EDUCATIONAL AND BEHAVIORAL STATISTICS, 2020, 45 (03) :339-368
[45]   Higher-Order Item Response Models for Hierarchical Latent Traits [J].
Huang, Hung-Yu ;
Wang, Wen-Chung ;
Chen, Po-Hsi ;
Su, Chi-Ming .
APPLIED PSYCHOLOGICAL MEASUREMENT, 2013, 37 (08) :619-637
[46]   Investigating latent constructs with item response models: A MATLAB IRTm toolbox [J].
Johan Braeken ;
Francis Tuerlinckx .
Behavior Research Methods, 2009, 41 :1127-1137
[47]   Item Response Theory With Estimation of the Latent Density Using Davidian Curves [J].
Woods, Carol M. ;
Lin, Nan .
APPLIED PSYCHOLOGICAL MEASUREMENT, 2009, 33 (02) :102-117
[48]   Polytomous explanatory item response models for item discrimination: Assessing negative-framing effects in social-emotional learning surveys [J].
Gilbert, Joshua B. ;
Zhang, Lijin ;
Ulitzsch, Esther ;
Domingue, Benjamin W. .
BEHAVIOR RESEARCH METHODS, 2025, 57 (04)
[49]   Synthesizing the Ability in Multidimensional Item Response Theory Models [J].
Montenegro Diaz, Alvaro Mauricio ;
Cepeda, Edilberto .
REVISTA COLOMBIANA DE ESTADISTICA, 2010, 33 (01) :127-147
[50]   Item Response Theory Models for Multidimensional Ranking Items [J].
Wang, Wen-Chung ;
Qiu, Xuelan ;
Chen, Chia-Wen ;
Ro, Sage .
QUANTITATIVE PSYCHOLOGY RESEARCH, 2016, 167 :49-65